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Skin Cancer Segmentation and Classification with Improved Deep Convolutional Neural Network

机译:皮肤癌细分和改进深卷积神经网络的分类

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In the last few years, Deep Learning (DL) has been showing superior performance in different modalities of bio-medicalimage analysis. Several DL architectures have been proposed for classification, segmentation, and detection tasks inmedical imaging and computational pathology. In this paper, we propose a new DL architecture, the NABLA-Nnetwork (?~N-Net), with better feature fusion techniques in decoding units for dermoscopic image segmentation tasks.The ?~N-Net has several advances for segmentation tasks. First, this model ensures better feature representation forsemantic segmentation with a combination of low to high-level feature maps. Second, this network shows betterquantitative and qualitative results with the same or fewer network parameters compared to other methods. In addition,the Inception Recurrent Residual Convolutional Neural Network (IRRCNN) model is used for skin cancer classification.The proposed ?~N-Net network and IRRCNN models are evaluated for skin cancer segmentation and classification on thebenchmark datasets from the International Skin Imaging Collaboration 2018 (ISIC-2018). The experimental results showsuperior performance on segmentation tasks compared to the Recurrent Residual U-Net (R2U-Net). The classificationmodel shows around 87% testing accuracy for dermoscopic skin cancer classification on ISIC2018 dataset.
机译:在过去的几年里,深入学习(DL)一直在生物医学的不同模式表现出卓越的表现图像分析。已经提出了用于分类,分割和检测任务的几个DL架构医学成像和计算病理学。在本文中,我们提出了一种新的DL架构,Nabla-n网络(?〜n-net),具有更好的特征融合技术,用于解码单元,用于Dermicocopic图像分割任务。?〜n-net有几个进展用于分割任务。首先,此模型可确保更好的特征表示用低电平到高级特征映射的语义分割。其次,这个网络更好地显示出来与其他方法相比,具有相同或更少的网络参数的定量和定性结果。此外,初始复发性残余卷积神经网络(IRRCNN)模型用于皮肤癌分类。提出的?〜N-NET网络和IRRCNN模型用于皮肤癌细分和分类从国际皮肤成像协作2018年的基准数据集(ISIC-2018)。实验结果表明与经常性残留U-Net(R2U-Net)相比,分段任务的优异性能。分类模型显示大约87%的Dermospic皮肤癌分类测试准确性ISIC2018数据集。

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